Back to Search Start Over

A machine learning based exploration of COVID-19 mortality risk.

Authors :
Mahdavi M
Choubdar H
Zabeh E
Rieder M
Safavi-Naeini S
Jobbagy Z
Ghorbani A
Abedini A
Kiani A
Khanlarzadeh V
Lashgari R
Kamrani E
Source :
PloS one [PLoS One] 2021 Jul 02; Vol. 16 (7), pp. e0252384. Date of Electronic Publication: 2021 Jul 02 (Print Publication: 2021).
Publication Year :
2021

Abstract

Early prediction of patient mortality risks during a pandemic can decrease mortality by assuring efficient resource allocation and treatment planning. This study aimed to develop and compare prognosis prediction machine learning models based on invasive laboratory and noninvasive clinical and demographic data from patients' day of admission. Three Support Vector Machine (SVM) models were developed and compared using invasive, non-invasive, and both groups. The results suggested that non-invasive features could provide mortality predictions that are similar to the invasive and roughly on par with the joint model. Feature inspection results from SVM-RFE and sparsity analysis displayed that, compared with the invasive model, the non-invasive model can provide better performances with a fewer number of features, pointing to the presence of high predictive information contents in several non-invasive features, including SPO2, age, and cardiovascular disorders. Furthermore, while the invasive model was able to provide better mortality predictions for the imminent future, non-invasive features displayed better performance for more distant expiration intervals. Early mortality prediction using non-invasive models can give us insights as to where and with whom to intervene. Combined with novel technologies, such as wireless wearable devices, these models can create powerful frameworks for various medical assignments and patient triage.<br />Competing Interests: The authors have declared that no competing interests exist.

Details

Language :
English
ISSN :
1932-6203
Volume :
16
Issue :
7
Database :
MEDLINE
Journal :
PloS one
Publication Type :
Academic Journal
Accession number :
34214101
Full Text :
https://doi.org/10.1371/journal.pone.0252384